Yihua Zhang
Room 3210
428 S Shaw LN
East Lansing, Michigan
United States of America
I am Yihua Zhang (张逸骅), a third-year Ph.D. student from OPTML Group at Michigan State University, supervised by Prof. Sijia Liu. My research focuses on the trustworthy and scalable ML algorithms. In general, my research spans the areas of machine learning (ML)/deep learning (DL), optimization theory, computer vision, and security. These research topics provide a solid foundation for my current and future research: Making AI system responsible and efficient. My research on these two goals are intervened and can be summarized as the following two perspectives:
Algorithmic perspective: This line of research designs the scalable and theoretically-grounded machine learning algorithms subject to real-life constraints, including bi-level optimization, zeroth-order optimization, inviriant risk minimization, etc.
Application perspective: This line of research tackles the domain-specific challenges to achieve scalable and trustworthy AI, including data and model pruning, efficient model structures, model robustness and unlearning, etc.
News
Aug 28, 2024 | I will start working as a research scientist intern at Meta AI! |
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Jul 1, 2024 | One paper accepted by ECCV’24! |
May 15, 2024 | Grateful to be selected as the 2024 ML and Systems Rising Star, and I will be attending the award ceremony to be held in the NVIDIA HQ in Santa Clara, CA on July 15-16! |
May 1, 2024 | Our ZO-Bench paper accepted in ICML 2024, check out our paper and code here! |
Feb 18, 2024 | Our latest dataset and benchmark on the unlearning methods for diffusion models has been released on arXiv! Check out the website, video, dataset, and benchmark! |